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  1. qft-agent-rediscovery qft-agent-rediscovery Public

    Rediscovering the Quantum Fourier Transform from a reward signal: a clean-room reproduction of Kerenidis & Cherrat (arXiv:2510.08159) in Apple MLX, with full-unitary fidelity benchmarks and CI.

    Python

  2. quantum-lejepa quantum-lejepa Public

    Quantum LeJEPA: applying LeJEPA self-supervised learning to quantum feature maps, and the second-moment operator M2 that predicts quantum-kernel trainability without training. Personal research.

    Python

  3. mathematical-physics-lean mathematical-physics-lean Public

    From Groups to Gravitational Waves: a pure-Lean-4 (no Mathlib), dimension-parametric formalization of mathematical physics through general relativity. 0 sorry; the n>=4 gravitational-wave threshold…

    TeX

  4. representation-group-flow representation-group-flow Public

    Representation Group Flow — MSc Mathematics thesis (NISER, 2023): an effective statistical-field-theory of a deep MLP at initialization; how representations flow with depth.

  5. gender-and-political-orientation gender-and-political-orientation Public

    Gender and Political Orientation in Europe — a data-science study engineering a two-axis political compass from European Social Survey data to model gender and age divides.

  6. sovereign-credit-ratings sovereign-credit-ratings Public

    Granularity Matters — MSc Data Science thesis (EDHEC, 2024): a hypothesis-tested study of data granularity for predicting US sovereign credit ratings (S&P and Fitch).